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UNDERSTANDING RESEARCH RESULTS: STATISTICAL INFERENCE
CHAPTER 13 UNDERSTANDING RESEARCH RESULTS: STATISTICAL INFERENCE © 2012 The McGraw-Hill Companies, Inc © 2012 The McGraw-Hill Companies, Inc.
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LEARNING OBJECTIVES Explain how researchers use inferential statistics to evaluate sample data Distinguish between the null hypothesis and the research hypothesis Discuss probability in statistical inference, including the meaning of statistical significance © 2012 The McGraw-Hill Companies, Inc.
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LEARNING OBJECTIVES Describe the t test, and explain the difference between one-tailed and two-tailed tests Describe the F test, including systematic variance and error variance Distinguish between Type I and Type II errors © 2012 The McGraw-Hill Companies, Inc.
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LEARNING OBJECTIVES Discuss the factors that influence the probability of a Type II error Discuss the reasons a researcher may obtain nonsignificant results Define power of a statistical test Describe the criteria for selecting an appropriate statistical test © 2012 The McGraw-Hill Companies, Inc.
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SAMPLES AND POPULATIONS
Inferential statistics are necessary because the results of a given study are based on data obtained from a single sample of researcher participants and Data are not based on an entire population of scores Allows conclusions on the basis of sample data © 2012 The McGraw-Hill Companies, Inc.
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INFERENTIAL STATISTICS
Allow researchers to make inferences about the true differences in populations of scores based on a sample of data from that population Allows that the difference between sample means may reflect random error rather than a real difference © 2012 The McGraw-Hill Companies, Inc.
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NULL AND RESEARCH HYPOTHESES
Null Hypothesis H0: The means of the populations from which the samples were drawn equal Research Hypothesis H1: The means of the populations from which the samples were drawn equal © 2012 The McGraw-Hill Companies, Inc.
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PROBABILITY AND SAMPLING DISTRIBUTIONS
Probability: The Case of ESP Are correct answers due to chance or due to something more? Sampling Distributions Sample Size © 2012 The McGraw-Hill Companies, Inc.
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within-group difference
THE t TEST t value is a ratio of two aspects of the data The difference between the group means and The variability within groups t= group difference within-group difference © 2012 The McGraw-Hill Companies, Inc.
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SAMPLING DISTRIBUTION OF t VALUES
© 2007 The McGraw-Hill Companies, Inc. © 2012 The McGraw-Hill Companies, Inc.
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EXAMPLE: THE t AND F TESTS
Degrees of Freedom One-Tailed Two-Tailed Tests The F Test (analysis of variance) Systematic variance Error variance © 2012 The McGraw-Hill Companies, Inc.
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EXAMPLE: THE t AND F TESTS
Calculating Effect Size Confidence Intervals and Statistical Significance Statistical Significance © 2012 The McGraw-Hill Companies, Inc.
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TYPE I AND ERRORS Type I Errors
Made when the null hypothesis is rejected but the null hypothesis is actually true Obtained when a large value of t or F is obtained by chance alone © 2012 The McGraw-Hill Companies, Inc.
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TYPE II ERRORS Type II Errors
Made when the null hypothesis is accepted although in the population the research hypothesis is true Factors related to making a Type II error Significance (alpha) level Sample size Effect size © 2012 The McGraw-Hill Companies, Inc.
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THE EVERYDAY CONTEXT OF TYPE I AND TYPE II ERRORS
© 2007 The McGraw-Hill Companies, Inc. © 2012 The McGraw-Hill Companies, Inc.
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SIGNIFICANCE LEVEL Researchers traditionally have used either a .05 or a .01 significance level in the decision to reject the null hypothesis There is universal agreement that the consequences of making a Type I error are more serious than those associated with a Type II error © 2012 The McGraw-Hill Companies, Inc.
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CHOOSING A SAMPLE SIZE: POWER ANALYSIS
Power is a statistical test that determines optimal sample size based on probability of correctly rejecting the null hypothesis Power = 1 – p (probability of Type II error) Effect sizes range and desired power Smaller effect sizes require larger samples to be significant Higher desired power demands a greater sample size Researchers usually strive power between .70 and .90 © 2012 The McGraw-Hill Companies, Inc.
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IMPORTANCE OF REPLICATIONS
Scientists attach little importance to results of a single study Detailed understanding requires numerous studies examining same variables Researchers look at the results of studies that replicate previous investigations © 2012 The McGraw-Hill Companies, Inc.
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SIGNIFICANE OF PEARSON’S r CORRELATION COEFFICIENT
Is the relationship statistically significant? H0: r = 0 and H1: r ≠ 0 It is proper to conduct a t-test to compare the r-value with the null correlation of 0.00 © 2012 The McGraw-Hill Companies, Inc.
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COMPUTER ANALYSIS OF DATA
Software Programs include SPSS SAS Minitab Microsoft Excel Steps in analysis Input data Rows represent cases or each participant’s scores Columns represent for a participant’s score for a specific variable Conduct analysis Interpret output © 2012 The McGraw-Hill Companies, Inc.
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SELECTING THE APPROPRIATE SIGNIFICANCE TEST
One Independent Variable Nominal Scale Data Ordinal Scale Data Interval or Ratio Scale Data © 2012 The McGraw-Hill Companies, Inc.
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SELECTING THE APPROPRIATE SIGNIFICANCE TEST
IV DV Statistical Test Nominal Male-Female Vegetarian – Yes / No Chi Square Nominal (2 Groups) Interval / Ratio Grade Point Average t-test Nominal (3 groups) Study time (Low, Medium, High) Test Score One-way ANOVA Optimism Score Sick Days Last Year Pearson’s correlation © 2012 The McGraw-Hill Companies, Inc.
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SELECTING THE APPROPRIATE SIGNIFICANCE TEST
Multiple Independent Variables Nominal Scale Data – Factorial Design Ordinal Scale Data – no appropriate test is available Interval or Ratio Scale Data – Multiple Regression © 2012 The McGraw-Hill Companies, Inc.
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